Machine learning for characterizing uncertain elastic properties of fused filament fabricated materials for topology optimization applications
Zahra Kazemi, Craig A. Steeves

TL;DR
This paper develops a neural network model to accurately quantify the uncertain elastic properties of 3D-printed materials using surface strain data, enhancing the robustness of topology optimization designs.
Contribution
It introduces a neural network approach trained on synthetic data to estimate local elastic modulus variations in fused filament fabricated materials, accounting for process-induced variability.
Findings
High predictive accuracy with R2 scores above 0.95 for elastic modulus parameters.
Effective estimation of mean and standard deviation of elastic modulus in both bulk and fusion layers.
Validation confirms the model's reliability in real-world FFF-printed material analysis.
Abstract
The layering approach used in fused filament fabrication (FFF) enables creation of complex designs generated by topology optimization. Defects associated with the layer-by-layer process, introduce considerable random variability to the local elastic modulus of the print. The elastic modulus along the fusion layers connecting bulk materials differs from that of the bulk areas. Accurate quantitative measurements of variations in both areas are essential to achieve robust optimized designs. This study aims to quantify the parameters of the random distributions given the surface strain field of the print measured by digital image correlation (DIC). Two statistical properties, mean and standard deviation, are sufficient to characterize the stochastic elastic modulus fields in each region. An efficient neural network model is developed to estimate spatial variations in the local elastic…
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Taxonomy
TopicsTopology Optimization in Engineering · Manufacturing Process and Optimization
